LAUSR.org creates dashboard-style pages of related content for over 1.5 million academic articles. Sign Up to like articles & get recommendations!

Towards Multi-Domain Face Synthesis Via Domain-Invariant Representations and Multi-Level Feature Parts

Photo by chrisjoelcampbell from unsplash

Cross-domain face synthesis plays a positive role in the real world. It is challenging to synthesize high-quality faces across multiple domains based on limited paired data because the multiple mappings… Click to show full abstract

Cross-domain face synthesis plays a positive role in the real world. It is challenging to synthesize high-quality faces across multiple domains based on limited paired data because the multiple mappings between different domains may interfere with each other. Cognitive science investigates that the brain can recognize the same person with multiple different expressions by extracting invariant information on the face and we humans perceive instances by decomposing them into parts. Motivated by these cognition, we propose a unified semi-supervised framework for multi-domain face synthesis by extracting a domain-invariant representation and exploiting parts of multi-level features. Specifically, realized by adversarial training with additional ability to utilize domain-specific information, a encoder is trained to remove domain-specific information and extract the domain-invariant representation from multiple inputs. Then, we utilize the multi-level feature parts extracted from inputs and reconstructed faces via a pre-trained recognition model to ensure that the domain-invariant representation contains enough useful semantic information. we also utilize the feature parts extracted from inputs and limited paired data to compose pseudo features in target domain for supervising the synthesis, which makes our framework suitable for large amounts of unpaired training data. By exploiting this framework, we can achieve face synthesis between multiple domains using some paired data together with a large training database without ground truth target faces. Experimental results demonstrate our framework achieves great performances on qualitative and quantitative evaluations under both artificial and uncontrolled environments, and our framework has competitive performances in single translation compared with specialized methods for translation between two specific domains.

Keywords: domain face; face; face synthesis; domain; domain invariant

Journal Title: IEEE Transactions on Multimedia
Year Published: 2022

Link to full text (if available)


Share on Social Media:                               Sign Up to like & get
recommendations!

Related content

More Information              News              Social Media              Video              Recommended



                Click one of the above tabs to view related content.